A First-Order Algorithm for Decentralised Min-Max Problems

08/23/2023
by   Yura Malitsky, et al.
0

In this work, we consider a connected network of finitely many agents working cooperatively to solve a min-max problem with convex-concave structure. We propose a decentralised first-order algorithm which can be viewed as a non-trivial combination of two algorithms: PG-EXTRA for decentralised minimisation problems and the forward reflected backward method for (non-distributed) min-max problems. In each iteration of our algorithm, each agent computes the gradient of the smooth component of its local objective function as well as the proximal operator of its nonsmooth component, following by a round of communication with its neighbours. Our analysis shows that the sequence generated by the method converges under standard assumptions with non-decaying stepsize.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/18/2020

Solving Non-Convex Non-Differentiable Min-Max Games using Proximal Gradient Method

Min-max saddle point games appear in a wide range of applications in mac...
research
10/24/2018

Solving Weakly-Convex-Weakly-Concave Saddle-Point Problems as Weakly-Monotone Variational Inequality

In this paper, we consider first-order algorithms for solving a class of...
research
06/01/2023

Smooth Monotonic Networks

Monotonicity constraints are powerful regularizers in statistical modell...
research
12/18/2017

No truthful mechanism can be better than n approximate for two natural problems

This work gives the first natural non-utilitarian problems for which the...
research
07/17/2020

A Hölderian backtracking method for min-max and min-min problems

We present a new algorithm to solve min-max or min-min problems out of t...
research
10/22/2020

Adaptive extra-gradient methods for min-max optimization and games

We present a new family of min-max optimization algorithms that automati...

Please sign up or login with your details

Forgot password? Click here to reset